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This study examines the coupling between land surface, boundary layer, and clouds to understand the physical processes and improve forecast accuracy. Data from flux towers and reanalysis models are used to assess the representation of key climate processes. The study focuses on the role of soil moisture, vegetation, relative humidity, and cloud cover in the land surface-climate relationship.
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Land-surface-BL-cloud couplingAlan K. BettsAtmospheric Research, Pittsford, VTakbetts@aol.comCo-investigatorsBERMS Data: Alan Barr, Andy Black, Harry McCaugheyERA-40 data: Pedro ViterboWorkshop on The Parameterization of the Atmospheric Boundary Layer Lake Arrowhead, California, USA 14-16 June 2005
Background references • Betts, A. K., 2004: Understanding Hydrometeorology using global models. Bull. Amer. Meteorol. Soc., 85, 1673-1688. • Betts, A. K and P. Viterbo, 2005: Land-surface, boundary layer and cloud-field coupling over the Amazon in ERA-40. J. Geophys. Res., in press • Betts, A. K., R. Desjardins and D. Worth, 2004: Impact of agriculture, forest and cloud feedback on the surface energy balance in BOREAS. Agric. Forest Meteorol., in press • Preprints: ftp://members.aol.com/akbetts
Climate and weather forecast modelsHow well are physical processes represented? • Accuracy of analysis: fit of model to data [analysis increments] • Accuracy of forecast : growth of RMS errors from observed evolution • Accuracy of model ‘climate’ : where it drifts to [model systematic biases] • FLUXNET data can assess biases and poor representation of physical processes and their coupling
Land-surface couplingModels differ widely [Koster et al., Science, 2004] Precip SMI lE clouds Precip vegetation vegetation BL param dynamics soils RH microphysics runoff Cu param LW,SW radiation Rnet , H SMI : soil moisture index [0<SMI<1 as PWP<SM<FC] αcloud: ‘cloud albedo’ viewed from surface [*]
Role of soil water, vegetation, LCL, BL and clouds in ‘climate’ over land • SMI Rveg RH LCL LCC • Clouds SW albedo (acloud) at surface, TOA • LCL + clouds LWnet • Clouds SWnet + LWnet= Rnet = lE + H + G • Tight coupling of clouds means: - lE ≈ constant - H varies with LCL and cloud cover But are models right?? [Betts and Viterbo, 2005] - DATA CAN TELL US
Daily mean fluxes give model ‘equilibrium climate’ state • Map model climate state and links between processes using daily means • Think of seasonal cycle as transition between daily mean states + synoptic noise
SMI RvegRH LCL LCC • RH gives LCL [largely independent of T] • Saturation pressure conserved in adiabatic motion • Think of RH linked to availability of water
What controls daily mean RH anyway? • RH is balance of subsidence velocity and surface conductance • Subsidence is radiatively driven [40 hPa/day] + dynamical ‘noise’ • Surface conductance Gs = GaGveg /(Ga+Gveg) [30 hPa/day for Ga =10-2; Gveg= 5.10-3 m/s]
ERA40: soil moisture → LCL and EF • River basin daily means • Binned by soil moisture and Rnet
ERA40: Surface ‘control’ • Madeira river, SW Amazon • Soil water LCL, LCC and LWnet
ERA-40 dynamic link (mid-level omega) • Ωmid → Cloud albedo, TCWV and Precipitation
Omega, P, E and TCWV • Linear relationship P with omega
Compare ERA-40 with 3 BERMS sites Focus: • Coupling of clouds to surface fluxes • Define a ‘cloud albedo’ that reduces the shortwave (SW) flux reaching surface - Basic ‘climate parameter’, coupled to surface evaporation [locally/distant] - More variable than surface albedo
Compare ERA-40 with BERMS • ECMWF reanalysis • ERA-40 hourly time-series from single grid-box • BERMS 30-min time-series from Old Aspen (OA)Old Black Spruce (OBS)Old Jack Pine (OJP) • Daily Average
Large T, RH errors in 1996- before BOREAS input • -10K bias in winter • NCEP/NCAR reanalysis saturates in spring • Betts et al. JGR, 1998
Global model improvements [ERA-40] • ERA-40 land-surface model developed from BOREAS • Reanalysis T bias of now small in all seasons • BERMS inter-site variability of daily mean T is small
BERMS and ERA-40: T, RH • ERA-40 RH close to BERMS in summer
BERMS: Old Black Spruce • Cloud ‘albedo’: αcloud = 1- SWdown/SWmax • Similar distribution to ERA-40
SW perspective: scale by SWmax • - asurf, acloud give SWnet - Rnet = SWnet - LWnet
Fluxes scaled by SWmax • Old Aspen has sharper summer season • ERA-40 accounts for freeze/thaw of soil
Seasonal Evaporative Fraction • Data as expected OA>OBS>OJP • ERA-40 too high in spring and fall • Lacks seasonal cycle • ERA a little high in summer?
Cloud albedo and LW comparison • ERA-40 has low αcloud except summer • ERA-40 has LWnet bias in winter?
How do fluxes depend on cloud cover? • Bin daily data by acloud • Quasi-linear variation • Evaporation varies less than other fluxes
OA Summers 2001-2003 were drier than 1998-2000 • Radiative fluxes same, but evaporation higher with higher soil moisture
Conclusions -1 • Flux tower data have played a key role in improving representation of physical processes in forecast models • Forecast accuracy has improved • Mean biases have been greatly reduced • Errors are still visible with careful analysis, so more improvements possible
Conclusions - 2 • Now looking for accuracy in key climate processes: will impact seasonal forecasts • Are observables coupled correctly in a model? • Key non-local observables: • BL quantities: RH, LCL • Clouds: reduce SW reaching surface, acloud
Conclusions - 3 • Cloud albedo is as important as surface albedo [with higher variability] • Surface fluxes : stratify by αcloud • Clouds, BL and surface are a coupled system: stratify by PLCL • Models can help us understand the coupling of physical processes
Comparison of T, Q, RH, albedos • ERA-40 has small wet bias • acloud is BL quantity: similar at 3 sites • RH, PLCL also ‘BL’: influenced by local lE
Controls on LWnet • Same for BERMS and ERA-40 • Depends on PLCL [mean RH, & depth of ML] • Depends on cloud cover
ERA-40 and BERMS average • ERA-40 has higher EF
EF to αcloud and LWnet • Similar but EF for ERA-40 > OBS
SW and LW feedback of EF • Greater EF • reduces outgoing LW • increases surface cloud albedo
Cloud forcing; Cloud albedos • SWCF:TOA = SW:TOA - SW:TOA(clear) • LWCF:TOA = LW:TOA - LW:TOA(clear) • SWCF:SRF = SW:SRF - SW:SRF(clear) • LWCF:SRF = LW:SRF - LW:SRF(clear) Atmosphere cloud radiative forcing are the differences • SWCF:ATM = SWCF:TOA - SW:SRF • LWCF:ATM = LWCF:TOA - LW:SRF Define TOA and SRF cloud albedos ALB:TOA = 1 - SW:TOA/SW:TOA(clear) cloud=ALB:SRF = 1 - SW:SRF/SW:SRF(clear)
SW and LW cloud forcing • Tight relation of TOA TOA and ATM LWCF and SRF SWCF - linked
Albedo, SW and LW couplingSW very tight • ALB:SRF = 1.45*ALB:TOA + 0.35*(ALB:TOA)2
Seasonal Cycle - 4 • Scaled SEB Convergence TCWV, cloud Rnet falls, E flat
Diurnal Temp. range and soil water • Similar behavior of DTR • Evaporation in ERA-40 is soil water dependent; not in BERMS [moss, complex soils]